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Hybrid Force-Position Robot Control: An Artificial Neural Network Backstepping Approach

机译:混合力 - 位置机器人控制:一种人工神经网络反向插入方法

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We derive an adaptive Lyapunov backstepping scheme to achieve hybrid force-position control of a revolute-joint robotic manipulator. It is suitable for the situation where the desired force and desired trajectory motion are perpendicular i.e. for operating on a flat surface. The control also tracks commands in free space so that no switching is required when encountering/leaving the surface. The control utilizes the robot parameters but neural networks adaptively model the environmental effects. The proof of stability requires an assumption of a passive mapping from velocity to force and that the environment can be modelled as a nonlinear stiffness. Simulation results show the proposed neural-adaptive solution can, without any pretraining, significantly outperform linear methods in both position and force tracking.
机译:我们推出了一种自适应Lyapunov BackStepping方案,实现了旋转接头机器人操纵器的混合力位置控制。它适用于所需力和所需的轨迹运动垂直的情况,即在平坦表面上操作。该控件还跟踪可用空间中的命令,以便在遇到/离开表面时不需要切换。该控件利用机器人参数,但神经网络适自适应地模拟环境效应。稳定性证明需要假设从速度到力的被动映射,并且环境可以被建模为非线性刚度。仿真结果显示了所提出的神经自适应解决方案,无需任何预先预先预测,在两个位置和力跟踪中显着优于线性方法。

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